Litcius/Paper detail

Resource Allocation in Intelligent Reflecting Surface Assisted NOMA Systems

Jiakuo Zuo, Yuanwei Liu, Zhijin Qin, Naofal Al‐Dhahir

2020IEEE Transactions on Communications268 citationsDOI

Abstract

This article investigates the downlink communications of intelligent reflecting surface (IRS) assisted non-orthogonal multiple access (NOMA) systems. To maximize the system throughput, we formulate a joint optimization problem over the channel assignment, decoding order of NOMA users, power allocation, and reflection coefficients. The formulated problem is proved to be NP-hard. To tackle this problem, a three-step novel resource allocation algorithm is proposed. Firstly, the channel assignment problem is solved by a many-to-one matching algorithm. Secondly, by considering the IRS reflection coefficients design, a low-complexity decoding order optimization algorithm is proposed. Thirdly, given a channel assignment and decoding order, a joint optimization algorithm is proposed for solving the joint power allocation and reflection coefficient design problem. Numerical results illustrate that: i) with the aid of IRS, the proposed IRS-NOMA system outperforms the conventional NOMA system without the IRS in terms of system throughput; ii) the proposed IRS-NOMA system achieves higher system throughput than the IRS assisted orthogonal multiple access (IRS-OMA) systems; iii) simulation results show that the performance gains of the IRS-NOMA and the IRS-OMA systems can be enhanced via carefully choosing the location of the IRS.

Topics & Concepts

NomaComputer scienceTelecommunications linkDecoding methodsThroughputResource allocationOptimization problemChannel (broadcasting)Mathematical optimizationComputational complexity theoryJoint (building)Channel allocation schemesAlgorithmWirelessComputer networkEngineeringMathematicsTelecommunicationsArchitectural engineeringAdvanced Wireless Communication TechnologiesOcular Disorders and Treatments